4th International Workshop on Pervasive and Context-Aware Middleware

Research Article

Inference of Hygiene Behaviours While Recognising Activities of Daily Living

  • @INPROCEEDINGS{10.4108/icst.iccasa.2014.257437,
        author={Usman Naeem and Abdel-Rahman Tawil and Ivans Semelis and Gaby Judah and Robert Aunger},
        title={Inference of Hygiene Behaviours While Recognising Activities of Daily Living },
        proceedings={4th International Workshop on Pervasive and Context-Aware Middleware},
        publisher={ACM},
        proceedings_a={PERCAM14},
        year={2015},
        month={3},
        keywords={human activity recognition assisted living hierarchal activities of daily life health and well-being wearable computing},
        doi={10.4108/icst.iccasa.2014.257437}
    }
    
  • Usman Naeem
    Abdel-Rahman Tawil
    Ivans Semelis
    Gaby Judah
    Robert Aunger
    Year: 2015
    Inference of Hygiene Behaviours While Recognising Activities of Daily Living
    PERCAM14
    ICST
    DOI: 10.4108/icst.iccasa.2014.257437
Usman Naeem1,*, Abdel-Rahman Tawil1, Ivans Semelis1, Gaby Judah2, Robert Aunger2
  • 1: University of East London
  • 2: London School of Hygiene and Tropical Medicine
*Contact email: U.Naeem@uel.ac.uk

Abstract

Many health problems are generally caused by unhealthy behaviours that occur whilst conducting everyday Activities of Daily Living (ADL), such as poor use of sanitation and hygiene. This paper describes the development of an ADL inference engine, which is able to recognise natural hygiene behaviour patterns. As opposed to traditional ADL classification approaches, the developed inference engine employs a novel hierarchal structure for the modelling, representation and recognition of the ADLs, its associated tasks, objects, dependencies and their relationships. The organisation of this information in a contextual structure plays a key role in carrying out robust ADL recognition for the detection of hygiene behaviours. The proposed work also marks a shift in feature detection methodology, as it allows actual behaviour to be studied in its natural environment within actual households, with at least two individuals per household as opposed to a laboratory based controlled setting. This paper also presents experimental results that validate the performance of the inference engine.